Artificial Intelligence for Business
Description
Artificial Intelligence for Business: A Roadmap for Getting Started with AI will provide the reader with an easy to understand roadmap for how to take an organization through the adoption of AI technology. It will first help with the identification of which business problems and opportunities are right for AI and how to prioritize them to maximize the likelihood of success. Specific methodologies are introduced to help with finding critical training data within an organization and how to fill data gaps if they exist. With data in hand, a scoped prototype can be built to limit risk and provide tangible value to the organization as a whole to justify further investment. Finally, a production level AI system can be developed with best practices to ensure quality with not only the application code, but also the AI models. Finally, with this particular AI adoption journey at an end, the authors will show that there is additional value to be gained by iterating on this AI adoption lifecycle and improving other parts of the organization.
Preface ix
Acknowledgments xi
Chapter 1 Introduction 1
Case Study #1: FANUC Corporation 2
Case Study #2: H&R Block 4
Case Study #3: BlackRock, Inc. 5
How to Get Started 6
The Road Ahead 10
Notes 11
Chapter 2 Ideation 13
An Artificial Intelligence Primer 13
Becoming an Innovation-Focused Organization 23
Idea Bank 25
Business Process Mapping 27
Flowcharts, SOPs, and You 28
Information Flows 29
Coming Up with Ideas 31
Value Analysis 31
Sorting and Filtering 34
Ranking, Categorizing, and Classifying 35
Reviewing the Idea Bank 37
Brainstorming and Chance Encounters 38
AI Limitations 41
Pitfalls 44
Action Checklist 45
Notes 46
Chapter 3 Defining the Project 47
The What, Why, and How of a Project Plan 48
The Components of a Project Plan 49
Approaches to Break Down a Project 53
Project Measurability 62
Balanced Scorecard 63
Building an AI Project Plan 64
Pitfalls 66
Action Checklist 69
Chapter 4 Data Curation and Governance 71
Data Collection 73
Leveraging the Power of Existing Systems 81
The Role of a Data Scientist 81
Feedback Loops 82
Making Data Accessible 84
Data Governance 85
Are You Data Ready? 89
Pitfalls 90
Action Checklist 94
Notes 94
Chapter 5 Prototyping 97
Is There an Existing Solution? 97
Employing vs. Contracting Talent 99
Scrum Overview 101
User Story Prioritization 103
The Development Feedback Loop 105
Designing the Prototype 106
Technology Selection 107
Cloud APIs and Microservices 110
Internal APIs 112
Pitfalls 112
Action Checklist 114
Notes 114
Chapter 6 Production 117
Reusing the Prototype vs. Starting from a Clean Slate 117
Continuous Integration 119
Automated Testing 124
Ensuring a Robust AI System 128
Human Intervention in AI Systems 129
Ensure Prototype Technology Scales 131
Cloud Deployment Paradigms 133
Cloud API’s SLA 135
Continuing the Feedback Loop 135
Pitfalls 135
Action Checklist 137
Notes 137
Chapter 7 Thriving with an AI Lifecycle 139
Incorporate User Feedback 140
AI Systems Learn 142
New Technology 144
Quantifying Model Performance 145
Updating and Reviewing the Idea Bank 147
Knowledge Base 148
Building a Model Library 150
Contributing to Open Source 155
Data Improvements 157
With Great Power Comes Responsibility 158
Pitfalls 159
Action Checklist 161
Notes 161
Chapter 8 Conclusion 163
The Intelligent Business Model 164
The Recap 164
So What are You Waiting For? 168
Appendix A AI Experts 169
AI Experts 169
Chris Ackerson 169
Jeff Bradford 173
Nathan S. Robinson 175
Evelyn Duesterwald 177
Jill Nephew 179
Rahul Akolkar 183
Steven Flores 187
Appendix B Roadmap Action Checklists 191
Step 1: Ideation 191
Step 2: Defining the Project 191
Step 3: Data Curation and Governance 192
Step 4: Prototyping 192
Step 5: Production 193
Thriving with an AI Lifecycle 193
Appendix C Pitfalls to Avoid 195
Step 1: Ideation 195
Step 2: Defining the Project 196
Step 3: Data Curation and Governance 199
Step 4: Prototyping 203
Step 5: Production 204
Thriving with an AI Lifecycle 206
Index 209
JEFFREY L. COVEYDUC is Vice President and Master Inventor at IBM. His diverse background consists of positions that encompass the creation of innovative, technologically advanced global AI solutions and client adoption.
JASON L. ANDERSON is a Partner and CTO with the data consultancy, Comp Three, where he established a new AI line of business. He is also a former IBM Cognitive Architect and Master Inventor. He received both BS and MS degrees in Computer Science from California Polytechnic State University, SLO.
We have reached a critical mass in the development of artificial intelligence. Thanks to products and services offered by the cloud, AI is now accessible even to smaller organizations or those with smaller budgets. And consumers are comfortable interacting with AI on a daily basisthink Apple's Siri, Netflix recommendations, and realtime GPS routing. With these two shifts, we see an elimination of the barriers to entry that once prevented many organizations from getting started with AI. Today, businesses know that AI is within their reach, and they know that their competitors, or disruptive startups, are working to leverage this new technology. AI is no longer an optional proposition.
We all need to think about implementing AI to stay competitive, but where do we start? Until now, there was no proven, step-by-step process to help businesses begin cutting costs and innovating using AI technology. In Artificial Intelligence for Business, Jeffrey L. Coveyduc and Jason L. Anderson provide just such a roadmap. This much-needed guide walks readers through the process of adopting AI technology, starting with identifying the opportunities most suited to AI solutions and leading all the way through deploying AI and iterating AI models for continuous improvement.
AI is inherently interdisciplinary, and, accordingly, this book takes an interdisciplinary approach. From a business perspective, leaders must understand that their most valuable resource is data. Locating (or, if necessary, creating), managing, and leveraging data resources is the name of the AI game. From a software development perspective, AI programming is very different from traditional application coding. If organizations and dev teams fail to understand the unique requirements of AI, their chances for success decrease. Readers will gain insight into each facet of AI and learn how to make them all work together for tangible value and innovation.
A PROVEN PROCESS FOR TRANSFORMING YOUR ORGANIZATION WITH AI TECHNOLOGY
The AI adoption journey is long, but the potential rewards are great. Many leaders have the drive and enthusiasm needed to get started with AI but no clear picture of how the process will unfold. Artificial Intelligence for Business minimizes the risk involved in making the transition to AI, both by providing concrete action steps and by identifying the most common pitfalls and how to avoid them. Such guidance could be the key to ensuring a profitable foray into the world of AI. Inside, you'll learn how to:
- Identify opportunities to reduce costs and capture market share using AI
- Locate the data you need to train AI models, and manage data assets professionally
- Create a functional AI prototype to limit risk and demonstrate the AI value proposition
- Confidently deploy and iterate your AI solutions in production
- Establish AI maturity using model libraries to capture profits and improve over time
This book is perfect for business leaders who want a high-level roadmap showing the way to proven success in the world of AI.
PUBLISHER:
Wiley
ISBN-13:
9781119651734
BINDING:
Hardback
BISAC:
COMPUTERS
BOOK DIMENSIONS:
Dimensions: 157.50(W) x Dimensions: 231.10(H) x Dimensions: 33.00(D)
AUDIENCE TYPE:
General/Adult
LANGUAGE:
English